Paper
10 November 2004 Regularized methods for hyperspectral image classification
Author Affiliations +
Proceedings Volume 5573, Image and Signal Processing for Remote Sensing X; (2004) https://doi.org/10.1117/12.601712
Event: Remote Sensing, 2004, Maspalomas, Canary Islands, Spain
Abstract
In this paper, we analyze regularized non-linear methods in the context of hyperspectral image classification. For this purpose, we compare regularized radial basis function neural networks (Reg-RBFNN), standard support vector machines (SVM), and kernel Fisher discriminant (KFD) analysis both theoretically and experimentally. We focus on the accuracy of methods when working in noisy environments, high input dimension, and limited number of training samples. In addition, some other important issues are discussed, such as the sparsity of the solutions, the computational burden, and the capability of the methods to provide probabilistic outputs. Although in general all methods yielded satisfactory results, SVM revealed more effective than KFD and Reg-RBFNN in standard situations regarding accuracy, robustness, sparsity, and computational cost.
© (2004) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Gustavo Camps-Valls and Lorenzo Bruzzone "Regularized methods for hyperspectral image classification", Proc. SPIE 5573, Image and Signal Processing for Remote Sensing X, (10 November 2004); https://doi.org/10.1117/12.601712
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Cited by 6 scholarly publications.
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KEYWORDS
Signal to noise ratio

Neural networks

Image classification

Hyperspectral imaging

Neurons

Remote sensing

Statistical analysis

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